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中文核心期刊

前视声呐三维视觉里程计技术

3D visual odometry technology based on forward-looking sonar

  • 摘要: 针对水下航行器的三维运动估计问题, 提出了一种基于前视声呐的三维视觉里程计框架, 包含特征提取、高程图恢复与三维运动估计三个主要模块。在特征提取部分, 通过基于马氏距离的滑动窗算法与局部二值拟合水平集算法相结合, 实现对目标轮廓的精细化分割, 并基于目标的灰度分布特征与梯度特性构建目标–阴影对; 在高程图恢复部分, 基于Lambert漫反射模型构建非线性方程组, 迭代求解目标内点高程; 在三维运动估计部分, 使用相干点漂移点云配准方法对高程图进行配准, 求解三维运动参数。仿真和实测结果表明, 所提方法较对比方法在平均误差、累计误差及均方根误差等评价指标上均表现出更优的性能, 显著提升了运动估计的准确性和可靠性。

     

    Abstract: Three-dimensional motion estimation serves as a crucial technology for autonomous underwater vehicles to attain high-precision navigation and positioning. This paper proposes a three-dimensional visual odometry framework based on forward-looking sonar, which consists of three main modules: feature extraction, elevation map restoration, and three-dimensional motion estimation. In the feature extraction module, a sliding window algorithm based on Mahalanobis distance is combined with the local binary fitting level set algorithm to achieve fine-grained segmentation of the target contour. Additionally, a target-shadow pair is constructed based on the gray-scale distribution characteristics and gradient properties of the target. In the elevation map restoration module, a nonlinear equation system is constructed based on the Lambert diffuse reflection model, and the elevation of the target internal points is iteratively solved. In the three-dimensional motion estimation module, the coherent point drift point cloud registration method is used to register the elevation maps and solve the three-dimensional motion parameters. Results from simulations and field measurements demonstrate that, when compared with other algorithms, the proposed method outperforms them in evaluation metrics such as average error, cumulative error, and root mean square error. Evidently, it significantly enhanced the accuracy and robustness of motion estimation.

     

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